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Neural network approaches to grade adult depression.

机译:神经网络方法可以对成人抑郁症进行分级。

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Depression is a common but worrying psychological disorder that adversely affects one's quality of life. It is more ominous to note that its incidence is increasing. On the other hand, screening and grading of depression is still a manual and time consuming process that might be biased. In addition, grades of depression are often determined in continuous ranges, e.g., 'mild to moderate' and 'moderate to severe' instead of making them more discrete as 'mild', 'moderate', and 'severe'. Grading as a continuous range is confusing to the doctors and thus affecting the management plan at large. Given this practical issue, the present paper attempts to differentiate depression grades more accurately using two neural net learning approaches-'supervised', i.e., classification with Back propagation neural network (BPNN) and Adaptive Network-based Fuzzy Inference System (ANFIS) classifiers, and 'unsupervised', i.e., 'clustering' technique with Self-organizing map (SOM), built in MATLAB 7. The reason for using the supervised and unsupervised learning approaches is that, supervised learning depends exclusively on domain knowledge. Supervision may induce biasness and subjectivities related to the decision-making. Finally, the performance of BPNN and ANFIS are compared and discussed. It was observed that ANFIS, being a hybrid system, performed much better compared to the BPNN classifier. On the other hand, SOM-based clustering technique is also found useful in constructing three distinct clusters. It also assists visualizing the multidimensional data clusters into 2-D.
机译:抑郁症是一种常见但令人担忧的心理疾病,会对人的生活质量产生不利影响。更加不祥的是注意到它的发病率正在增加。另一方面,抑郁症的筛查和分级仍然是一个手动且耗时的过程,可能会有偏差。另外,抑郁症的等级通常是在连续范围内确定的,例如“轻度至中度”和“中度至重度”,而不是使它们的离散程度更像“轻度”,“中度”和“严重”。评分范围连续不断会使医生感到困惑,从而影响整个管理计划。鉴于这个实际问题,本文尝试使用两种“监督”的神经网络学习方法(即使用反向传播神经网络(BPNN)和基于自适应网络的模糊推理系统(ANFIS)分类器进行分类)来更准确地区分抑郁等级。以及MATLAB 7中内置的“非监督”(即具有自组织映射(SOM)的“聚类”技术)的原因。使用监督和非监督学习方法的原因是,监督学习完全取决于领域知识。监督可能会引起与决策有关的偏见和主观性。最后,对BPNN和ANFIS的性能进行了比较和讨论。据观察,作为混合系统的ANFIS与BPNN分类器相比,性能要好得多。另一方面,还发现基于SOM的聚类技术可用于构造三个不同的聚类。它还有助于将多维数据集群可视化为二维。

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